Sampling phylogenetic tree space with the generalized Gibbs sampler
Contribuinte(s) |
Dr. Morris Goodman |
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Data(s) |
01/03/2005
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Resumo |
The generalized Gibbs sampler (GGS) is a recently developed Markov chain Monte Carlo (MCMC) technique that enables Gibbs-like sampling of state spaces that lack a convenient representation in terms of a fixed coordinate system. This paper describes a new sampler, called the tree sampler, which uses the GGS to sample from a state space consisting of phylogenetic trees. The tree sampler is useful for a wide range of phylogenetic applications, including Bayesian, maximum likelihood, and maximum parsimony methods. A fast new algorithm to search for a maximum parsimony phylogeny is presented, using the tree sampler in the context of simulated annealing. The mathematics underlying the algorithm is explained and its time complexity is analyzed. The method is tested on two large data sets consisting of 123 sequences and 500 sequences, respectively. The new algorithm is shown to compare very favorably in terms of speed and accuracy to the program DNAPARS from the PHYLIP package. |
Identificador | |
Idioma(s) |
eng |
Publicador |
Academic Press Inc Elsevier Science |
Palavras-Chave | #Generalized Gibbs sampler #Markov chain Monte Carlo #Phylogenetic trees #Generalized Gibbs Sampler #Phylogenetic Inference #Genetics & Heredity #Evolutionary Biology #Markov Chain Monte Carlo #Chain Monte-carlo #Sequences #Inference #Biochemistry & Molecular Biology #230202 Stochastic Analysis and Modelling #239901 Biological Mathematics #780105 Biological sciences #C1 #270208 Molecular Evolution |
Tipo |
Journal Article |